Affiliation:
1. College of Information Engineering, Shanghai Maritime University, Shanghai, 201306, China
Abstract
Background:
Drug repositioning now is an important research area in drug discovery as
it can accelerate the procedures of discovering novel effects of existing drugs. However, it is challenging
to screen out possible effects for given drugs. Designing computational methods are a quick
and cheap way to complete this task. Most existing computational methods infer the relationships
between drugs and diseases. The pathway-based disease classification reported in KEGG provides
us a new way to investigate drug repositioning as such classification can be applied to drugs. A predicted
class of a given drug suggests latent diseases it can treat.
Objective:
The purpose of this study is to set up efficient multi-label classifiers to predict the classes
of drugs.
Methods:
We adopt three types of drug information to generate drug features, including drug pathway
information, label information and drug network. For the first two types, drugs are first encoded
into binary vectors, which are further processed by singular value decomposition. For the third type,
the network embedding algorithm, Mashup, is employed to yield drug features. Above features are
combined and fed into RAndom k-labELsets (RAKEL) to construct multi-label classifiers, where
support vector machine is selected as the base classification algorithm.
Results:
The ten-fold cross-validation results show that the classifiers provide high performance
with accuracy higher than 0.95 and absolute true higher than 0.92. The case study indicates the novel
effects of three drugs, i.e., they may treat new diseases.
Conclusion:
The proposed classifiers have high performance and are superiority to the classifiers
with other classic algorithms and drug information. Furthermore, they have the ability to discover
new effects of drugs.
Publisher
Bentham Science Publishers Ltd.
Cited by
6 articles.
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